US10860683B2 - Pattern change discovery between high dimensional data sets - Google Patents
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Definitions
- Pattern change discovery from high dimensional data sets is a general problem that arises in almost every application in the real-world; examples of such applications include concept drift mining in text data, event discovery in surveillance video data, event discovery in news data, hot topic discovery in the literature, image pattern change detection, as well as genome sequence change detection in bioinformatics, to just name a few.
- the two high-dimensional data sets may be the two text documents; in detecting any concept drift among a text stream, any pair of two neighboring snapshots of the text collections in the timeline may be considered as the two high-dimensional data sets; in detecting any pattern change between two images or two collections of images, the two high dimensional data sets may be the two corresponding images or the two collections of the images; in detecting any event occurred in a surveillance video camera, the two high-dimensional data sets may be any pair of two neighboring video frames or groups of video frames in the video stream; in detecting any hot topics in a news data stream, the two high-dimensional data sets may be two neighboring sample windows of the news text data within the stream.
- FIG. 1 gives two pairs of vectors (v 1 , v 2 ) and (v′ 1 , v′ 2 ), and the angles, ⁇ , ⁇ ′ between each pair, respectively.
- Euclidean distance fails to detect ⁇ ′, and therefore, is unable to differentiate the length difference from the direction difference introduced by the dimensionality.
- the pattern change detection problem also called concept drift in several specific applications, has been attracted great effort [26, 31, 30, 29, 21].
- Classifiers are trained to capture the subspace structures of the high-dimensional data sets via support vectors. The pattern changes can be indirectly reflected through evaluating the classification errors on the data sets.
- Tsymbal [26] provides an overview of the important literature on this topic.
- the main categories of the methods to address the concept drift analysis problem include the instance selection and weighting [13, 11], the ensemble learning [30, 31, 2], and the two-samples hypothesis test [5, 10, 21].
- supervised learning techniques have the capacity to detect structural changes between high-dimensional data sets, they require labels to train and validate the classifiers.
- Dries and Ruckert proposed a trade-off strategy. Without using real labels, they constructed two virtual classifiers by giving two different types of the labels to the two data sets, respectively, and then proposed three two-sample test methods based on the quality of the classifiers; a good quality indicates a concept drift between the two data sets. Using one classifier to describe the whole dataset, however, oversimplifies the mixture structures of the data sets, and the detection performance is expected to be impaired (see Sec. 5).
- the general problem of pattern change discovery between high-dimensional data sets is an interesting one.
- Current methods either mainly focus on magnitude change detection of low-dimensional data sets or are under supervised frameworks.
- the notion of the principal angles between the subspaces is introduced according to aspects of the present technology to measure the subspace difference between two high-dimensional data sets. Principal angles bear a property to isolate subspace change from the magnitude change. That is, the principal angles are invariant under magnitude change.
- matrix factorization may be used to serve as a statistical framework and develop the principle of the dominant subspace mapping to transfer the principal angle based detection to a matrix factorization problem. Matrix factorization can be naturally embedded into the likelihood ratio test based on the linear models.
- the proposed method is of an unsupervised nature and addresses the statistical significance of the pattern changes between high-dimensional data sets. Different applications of this solution have various specific real-world applications, demonstrating the power and effectiveness of this method.
- the concept of dominant subspace based on the principal angles [ 7 ] is introduced.
- the notion of principal angles between two subspace has an advantageous property of invariance under an isomorphism, thus is independent of data's magnitude change.
- the challenge then is to compute the principal angles.
- matrix factorization is used to serve as a statistical framework for computing the principal angles.
- the principle of dominant subspace mapping is used to show how matrix factorization can be naturally embedded into the likelihood ratio test based on the principle.
- the proposed method is of an unsupervised nature and addresses the statistical significance of the pattern changes between represented in the linear models.
- the statistical significance of the difference is preferably addressed according to the present technology through a likelihood hypothesis test based on the linear model. This provides a technique which employs matrix factorization to develop a statistical framework for the pattern change detection.
- threshold value h in the likelihood ratio test depends on the characteristics of the specific application. In many cases, ranking can be applied instead of thresholding. More specifically, when detecting an event from the news streams and video streams, one can rank the likelihood ratio sequence ⁇ in a descent order; the top-ranked data segments correspond to the most significant pattern changes in the given data streams (See FIGS. 3 and 5-7 ).
- a threshold is determined by the relative consequences of different actions representing one of the four possible scenarios: true positive, true negative, false positive, and false negative [153].
- An overall assessment of the cost associated with any of the four consequences in a specific application needs to be conducted before we are able to give an appropriate threshold value. For example, if the specific application is the earthquake detection in a densely populated area, a few false positives are allowed but no false negatives are acceptable.
- Utility functions needs to be evaluated from the four possible outcomes; a threshold comes as a trade-off among the utilities of the four outcomes. Determining the utility function is application specific, depending possibly on the budget, and the cost of the hazard, etc.
- the present technology may be applied to large data sets of various types, for example, video, audio, semantic, financial data (e.g., markets, transactions), social networks and data feeds, and the like.
- an advantage of various embodiments according to the present technology is that a segmentation, parsing, clustering or other significant pre-processing of the data is not required.
- an actual understanding or modeling of the data content is not required.
- processing the data using such techniques may eliminate noise or otherwise accentuate features of interest, and thus facilitate the underlying process.
- the extraction of principal angles similar to the extraction of principal components, may be applied to data sets which are relatively raw, and the statistical processes themselves extract the distinguishing features.
- the technology is used to determine existence of a significant pattern change, without directly addressing what features are most significant in that determination. For example, one might seek to monitor equity market data and news data feeds in real time to determine whether a significant change in market trajectory is about to occur.
- the models to be compared are a high dimensional model of historical performance of equity markets with respect to news feeds, and a model of current market conditions with a relatively short tail.
- the system then seeks to determine the set of principal angles of the dominant subspace representing differences between the respective linear models using matrix factorization. This is may be conducted with a massively parallel processor system, such as the IBM Netezza Puredata System for Analytics N1001-010 (on one or multiple racks).
- a statistical test is established to qualify the statistical significance of differences, based on a set of basis vectors.
- the threshold for a determination of significance may be manually set, or static or adaptive dependent on the model of the data itself. In this case, there is no “intelligence” applied to identify an event or object which particularly contributes to a determination of the significance of changes, but rather a statistical process.
- the decision threshold may be adaptive to type 1 (false positive) errors, type 2 (false negative) errors, a relationship between type 1 and type 2 errors, or other factors, which may be intrinsic or extrinsic to the data sets.
- Another example of the use of this technology is a collaborative filter.
- affinity groups of people with common interest are created to predict future preferences for other group members.
- the present technology may be used on all or selected portions of the data set to determine significant changes over time; when those changes occur, reliance on the past data is suspect, and therefore an alternate approach adopted. For example, a statistically similar subpopulation may be selected for use in the collaborative filter. Likewise, suspect data for users may be removed from an updated model, to the point necessary to avoid significant pattern changes. Therefore, the magnitude and angle of differences between datasets, represented by the principal components and the principal angles, may both be employed. According to the preferred embodiment, the principal angles are produced using a matrix factorization of the linear model of the dominant subspace, which are then statistically tested.
- It is another object to provide a method for pattern change discovery between high-dimensional data sets comprising: determining a linear model of a dominant subspace for each pair of high dimensional data sets using at least one automated processor, and using matrix factorization to produce a set of principal angles representing differences between the linear models; defining a set of basis vectors under a null hypothesis of no statistically significant pattern change and under an alternative hypothesis of a statistically significant pattern change; performing a statistical test on the basis vectors with respect to the null hypothesis and the alternate hypothesis to automatically determine whether a statistically significant difference is present; and producing an output selectively dependent on whether the statistically significant difference is present.
- a further object provides a nontransitory computer readable medium, comprising instructions for controlling a programmable processor to perform a method comprising: determining a linear model of a dominant subspace for each pair of high dimensional data sets using at least one automated processor, and using matrix factorization to produce a set of principal angles representing differences between the linear models; defining a set of basis vectors under a null hypothesis of no statistically significant pattern change and under an alternative hypothesis of a statistically significant pattern change; performing a statistical test on the basis vectors with respect to the null hypothesis and the alternate hypothesis to automatically determine whether a statistically significant difference is present; and producing an output selectively dependent on whether the statistically significant difference is present.
- It is also an object to provide a system for determining pattern change discovery between high-dimensional data sets comprising: an input configured to receive a pair of high dimensional data sets; at least one automated processor, configured to: determine a linear model of a dominant subspace for each pair of high dimensional data sets; factoring at least one matrix to produce a set of principal angles representing differences between the linear models; define a set of basis vectors under a null hypothesis of no statistically significant pattern change and under an alternative hypothesis of a statistically significant pattern change; and perform a statistical test on the basis vectors with respect to the null hypothesis and the alternate hypothesis to determine whether a statistically significant difference is present; and an output configured to communicate data selectively dependent on whether the statistically significant difference is present.
- the statistical test may comprise a likelihood ratio test.
- the automatically determining step is preferably unsupervised.
- the method may further comprise determining a statistical significance of pattern changes between the dominant subspaces.
- the high-dimensional data sets comprise semantic data, video data, and/or multimedia data.
- the high-dimensional data sets may comprise data representing a common source or location acquired at different times.
- FIG. 1 shows the Euclidean metric fails to differentiate the length difference from the direction difference
- FIGS. 2A-2H show the detection performance of LRatio and 4 comparison methods. For each pair of W and B, a smaller overlap between W and B indicates a better performance;
- FIG. 3 shows test sequences for Google political news stream
- FIGS. 4A, 4B, and 4C show pattern changes detected by LRatio vs. Clusters found by KM. ‘x’ marks the old news topics that have been detected in the previous days. Boxes with the same colors are related to the same news topics;
- FIGS. 5A and 5B show detection result for video 1;
- FIG. 5A rank 1 event a man is running towards a cart;
- FIG. 5B the test sequence;
- the star marks the time when this man begins running;
- FIGS. 6A and 6B show detection results for video 2;
- FIG. 6A rank 1 event an earthquake occurs and people are running out;
- FIG. 6B shows the test sequence; the star marks the time when the earthquake occurs;
- FIGS. 7A, 7B and 7C show detection results for video 3;
- FIG. 7A rank 2 event the car collision occurs;
- FIG. 7B rank 1 event a man is running towards the accident scene; and
- FIG. 7C the test sequence; the star marks the time of the collision.
- FIG. 8 represents a prior art hardware system.
- Pattern change discovery between high-dimensional data sets may therefore be detected, by, for example, determining a linear model of a dominant subspace for each pair of high dimensional data sets, and using matrix factorization to produce a set of principal angles representing differences between the linear models.
- a set of basis vectors is defined under a null hypothesis of no statistically significant pattern change, and under an alternative hypothesis of a statistically significant pattern change.
- a statistical test is performed on the basis vectors with respect to the null hypothesis and the alternate hypothesis to determine whether a statistically significant difference is present.
- the statistical test may employ a likelihood ratio statistic given by
- a matrix is denoted as a capital letter in boldface such as X.
- X ij is the entry in the ith row and the jth column.
- X i ⁇ stands for the ith row of X and X ⁇ j stands for the jth column of X.
- a vector is a lowercase letter in boldface such as x.
- a scalar variable is denoted as a lowercase letter such as x.
- U T stands for the transpose of the matrix U.
- X m ⁇ n stands for a matrix X ⁇ m ⁇ n .
- span(A) stands for the subspace spanned by the column vectors of the matrix A.
- ⁇ by default is the Frobenius norm for a matrix;
- ⁇ 2 is the 2-norm [7] for a matrix.
- diag( ⁇ x i ⁇ ) stands for a diagonal matrix with x i as its ith diagonal entry.
- the principal angles between subspaces are used to measure the subspace difference between data sets of high dimensions. Discussed above are pitfalls of the popular distance metrics. Starting with the same example in FIG. 1 , the Euclidean distance fails to detect ⁇ ′, and therefore, is unable to differentiate the length difference from the direction difference introduced by the dimensionality. On the other hand, in this specific example, the principal angle between span(v 1 ) and span(v 2 ) is actually ⁇ , and that between span(v 1 ′) and span(v 2 ′) is ⁇ ′.
- span(v) instead of just v. This indicates that ⁇ and ⁇ ′ are invariant under the length shrinking or stretching for the corresponding vectors.
- the algorithm given in [7] to compute the principal angles takes O (4n(q 2 +2p 2 )+2pq(n+q)+12q 3 ) in time complexity.
- the leading largest principal angles depict the most noticeable structural difference between S i and S 2 .
- the corresponding dimensions responsible for the largest principal angles are of great interest as they reflect the major pattern change.
- the subspace formed by these dimensions is called the dominant subspace.
- the values of n, p, and q in Definition 1 can be very large in real-world data sets, resulting in a high complexity to compute the principal angles.
- P the prototype patterns, and its changing behavior.
- S describes how the k prototypes are distributed among the n samples and may also contain useful information to characterize the dataset.
- the proof of Lemma 1 uses the method in [7] for computing the principal angles.
- R and R′ are upper triangular, the inverses R ⁇ 1 and R′ ⁇ 1 are also upper triangular. Therefore, the eigenvalues of R are ⁇ (R) ii
- i 1, . . . , p ⁇ , the diagonal entries of R. Hence, the eigenvalues of R ⁇ 1 are ⁇ 1/(R) ii ⁇ , the inverse of the diagonal entries of R. The same conclusion also holds true for R′ ⁇ 1 . Thus,
- the loss function (6) is invariant under this rule if and only if P and S are at a stationary point of the loss function.
- the proof of lemma 2 proceeds by first proving the convergence of the updating rules for P and S, then determining the value of ⁇ . To prove the updating rules for P and S, an auxiliary function similar to that used in the Expectation-Maximization algorithm [17] is used.
- the auxiliary function is a useful concept due to the following lemma:
- P ij t + 1 P ij t ⁇ ( XS ) ij ( PS ⁇ T ⁇ S + ⁇ ⁇ ⁇ P ′ ⁇ P ′ ⁇ ⁇ T ⁇ P ) ij ( 22 )
- the time complexity of the updating rule (5) is O (mnk) in each iteration, and that of (7) is O (mnk+k 2 m) in each iteration; the complexity to compute ⁇ is O (mnk), where m, n, and k are defined in Section 4.1.
- the total time complexity is O (mnk+k 2 m) for each iteration, which is much lower than that of directly computing the principal angles between X and X′.
- the goal of the first application is to verify the performance of LRatio test using collections of text documents.
- the standard 20-newsgroup data sets [14] are used, the dimension scale of which is of thousands.
- eight scenarios are constructed using different topic combinations. For each scenario, two parts are set up (Part 1 and Part 2). Each part contains articles evenly mixed from one or more topics. Under each scenario, if the two data sets are sampled from the same part, they should bear similar subspace structure; while if the two data sets are from different parts, their subspace structures are different and LRatio test should be able to reflect this difference through the testing statistic.
- These eight scenarios are constructed to showcase data sets with different structural complexities and/or pattern change strengths. The first four scenarios intend to imitate moderate pattern change by electing similar topics between the two parts. The next four scenarios imitate strong pattern change by setting different topics between the two parts. The performance of LRatio is compared with the following methods.
- the standard K-means is applied to each of the two data sets to obtain the data matrices composed of the K centroids, respectively, and then the subspaces distance computed between the pair of the K centroids based on Definition (1).
- a pattern change results in a large distance. This distance is used as a statistic to indicate the pattern change, and its sensitivity compared with LRatio test.
- this baseline method is called KM.
- FIGS. 2A-2H show the detection performance of LRatio and 4 comparison methods. For each pair of W and B, a smaller overlap between W and B indicates a better performance: 1 shows the LRatio; 2 shows SVM-(0,1); 3 shows SVM-sigmoid; 4 shows the SVM-margin; and 5 shows KM W Sampling. Within each part; B shows Sampling Between two Parts.
- FIGS. 2A-2H document all the results of this experiment, where a boxplot is used to represent the numerical distribution of the statistics obtained from the sampling within each part (red boxplots) and sampling between two parts (blue boxplots).
- the median (in ⁇ ), the 25th percentile(in bars), the 75 th percentiles (in whiskers) and the outliers (in ⁇ ) of the distribution are drawn. Consequently, for each method and for each of the eight collections, there is a corresponding pair of boxplots representing the statistic distributions for sampling within each part (red boxplot labeled with letter W) and for sampling between two parts (blue boxplot labeled with letter B), respectively.
- FIG. 3 documents the political news test sequences within the window between Oct. 23, 2008, and Nov. 22, 2008 for LRatio, KM, and SVM-margin. Since the three methods from [5] are very close in performance, for the clarity purpose in the figure, only the test sequence of SVM-margin in this figure is shown. Presumably in the figure for each method a significant peak in the test sequence means a significant pattern change, indicating that significant news events are detected by this method on that day. Everyday's news data within this whole month was manually examined to provide the ground truth regarding whether there are any significant news events on everyday of the month, and annotated the specific events.
- FIGS. 4A-4C show pattern changes detected by LRatio v.s. Clusters found by KM. ‘x’ marks the old news topics that have been detected in the previous days. Boxes with the same colors are related to the same news topics
- FIGS. 4A-4C document the top five detected significant events on November 7, November 13, and November 19 for both methods, respectively, where each event is represented using a bar with the length proportional to the significance of the event, and the same event is ground-truthed with the same color. From these figures, there are three observations.
- SVM-margin does not have the capability to do the clustering analysis to report the specific events detected on each day as LRatio and KM do, it detects the events based on a holistic analysis reported in the test sequence shown in FIG. 3 , from which it is clear that SVM-margin still fails to detect any significant events on November 13 and November 19 with an exception on November 7 because the event Obama Became US President was such an obvious significant event that SVM-margin did not miss.
- LRatio aims at discovering pattern changes regardless of whether the pattern changes come from a completely new topic or a new direction of an existing topic.
- KM aims at discovering major clusters from the data; thus, new topics need time to “accumulate” to form clusters in order to become significant topics, while new directions of an existing topic are likely to be absorbed into the clusters and would never show up until they eventually dominate the clusters. That is why KM always misses many significant events and often detects an event with a delay in time.
- SVM-margin SVM-(0,1), and SVM-(sigmoid), although they also aim at discovering pattern changes, they work well only when the data have a simple structure and the majority of the samples bear a similar pattern change, which also explains why they only provide a holistic statistic on event detection with no capability for the specific pattern changes.
- LRatio is applied to the surveillance video stream data to detect events.
- each frame of the video stream is considered as a sample vector.
- LRatio is applied to each pair of neighboring video segments (each segment has 100 frames) to see whether there is any event occurred.
- FIGS. 5 to 7 showcase three different tests of using LRatio for surveillance event detection, where in each of the figures the left panel is a snapshot of the surveillance video stream and the right panel indicates the test sequence of LRatio along the timeline.
- FIGS. 5A and 5B show the detection result for video 1; (a) rank 1 event: a man is running towards a cart; and (b) the test sequence; the star marks the time when this man begins running.
- FIGS. 6A and 6B show the detection result for video 2; (a) rank 1 event: an earthquake occurs and people are running out; and (b) the test sequence; the star marks the time when the earthquake occurs.
- FIGS. 7A-7C show the detection result for video 3: (a) rank 2 event: the car collision occurs; (b) rank 1 event: a man is running towards the accident scene; and (c) the test sequence; the star marks the time of the collision.
- FIG. 8 shows a block diagram that illustrates a computer system 400 upon which an embodiment of the invention may be implemented.
- Computer system 400 includes a bus 402 or other communication mechanism for communicating information, and a processor 404 coupled with bus 402 for processing information.
- Computer system 400 also includes a main memory 406 , such as a random access memory (RAM) or other dynamic storage device, coupled to bus 402 for storing information and instructions to be executed by processor 404 .
- Main memory 406 also may be used for storing temporary variables or other intermediate information during execution of instructions to be executed by processor 404 .
- Computer system 400 further includes a read only memory (ROM) 408 or other static storage device coupled to bus 402 for storing static information and instructions for processor 404 .
- ROM read only memory
- a storage device 410 such as a magnetic disk or optical disk, is provided and coupled to bus 402 for storing information and instructions.
- Computer system 400 may be coupled via bus 402 to a display 412 , such as a cathode ray tube (CRT), for displaying information to a computer user.
- a display 412 such as a cathode ray tube (CRT)
- An input device 414 is coupled to bus 402 for communicating information and command selections to processor 404 .
- cursor control 416 is Another type of user input device
- cursor control 416 such as a mouse, a trackball, or cursor direction keys for communicating direction information and command selections to processor 404 and for controlling cursor movement on display 412 .
- This input device typically has two degrees of freedom in two axes, a first axis (e.g., x) and a second axis (e.g., y), that allows the device to specify positions in a plane.
- the invention is related to the use of computer system 400 for implementing the techniques described herein. According to one embodiment of the invention, those techniques are performed by computer system 400 in response to processor 404 executing one or more sequences of one or more instructions contained in main memory 406 . Such instructions may be read into main memory 406 from another machine-readable medium, such as storage device 410 . Execution of the sequences of instructions contained in main memory 406 causes processor 404 to perform the process steps described herein. In alternative embodiments, hard-wired circuitry may be used in place of or in combination with software instructions to implement the invention. Thus, embodiments of the invention are not limited to any specific combination of hardware circuitry and software.
- machine-readable medium refers to any medium that participates in providing data that causes a machine to operation in a specific fashion.
- various machine-readable media are involved, for example, in providing instructions to processor 404 for execution.
- Such a medium may take many forms, including but not limited to, non-volatile media, volatile media, and transmission media.
- Non-volatile media includes, for example, optical or magnetic disks, such as storage device 410 .
- Volatile media includes dynamic memory, such as main memory 406 .
- Transmission media includes coaxial cables, copper wire and fiber optics, including the wires that comprise bus 402 .
- Transmission media can also take the form of acoustic or light waves, such as those generated during radio-wave and infra-red data communications. All such media must be tangible to enable the instructions carried by the media to be detected by a physical mechanism that reads the instructions into a machine.
- Machine-readable media include, for example, a floppy disk, a flexible disk, hard disk, magnetic tape, or any other magnetic medium, a CD-ROM, any other optical medium, punchcards, papertape, any other physical medium with patterns of holes, a RAM, a PROM, and EPROM, a FLASH-EPROM, any other memory chip or cartridge, a carrier wave as described hereinafter, or any other medium from which a computer can read.
- Various forms of machine-readable media may be involved in carrying one or more sequences of one or more instructions to processor 404 for execution.
- the instructions may initially be carried on a magnetic disk of a remote computer.
- the remote computer can load the instructions into its dynamic memory and send the instructions over a telephone line using a modem.
- a modem local to computer system 400 can receive the data on the telephone line and use an infra-red transmitter to convert the data to an infra-red signal.
- An infra-red detector can receive the data carried in the infra-red signal and appropriate circuitry can place the data on bus 402 .
- Bus 402 carries the data to main memory 406 , from which processor 404 retrieves and executes the instructions.
- the instructions received by main memory 406 may optionally be stored on storage device 410 either before or after execution by processor 404 .
- Computer system 400 also includes a communication interface 418 coupled to bus 402 .
- Communication interface 418 provides a two-way data communication coupling to a network link 420 that is connected to a local network 422 .
- communication interface 418 may be an integrated services digital network (ISDN) card or a modem to provide a data communication connection to a corresponding type of telephone line.
- ISDN integrated services digital network
- communication interface 418 may be a local area network (LAN) card to provide a data communication connection to a compatible LAN.
- LAN local area network
- Wireless links may also be implemented.
- communication interface 418 sends and receives electrical, electromagnetic or optical signals that carry digital data streams representing various types of information.
- Network link 420 typically provides data communication through one or more networks to other data devices.
- network link 420 may provide a connection through local network 422 to a host computer 424 or to data equipment operated by an Internet Service Provider (ISP) 426 .
- ISP 426 in turn provides data communication services through the world wide packet data communication network now commonly referred to as the “Internet” 428 .
- Internet 428 uses electrical, electromagnetic or optical signals that carry digital data streams.
- the signals through the various networks and the signals on network link 420 and through communication interface 418 which carry the digital data to and from computer system 400 , are exemplary forms of carrier waves transporting the information.
- Computer system 400 can send messages and receive data, including program code, through the network(s), network link 420 and communication interface 418 .
- a server 430 might transmit a requested code for an application program through Internet 428 , ISP 426 , local network 422 and communication interface 418 .
- the received code may be executed by processor 404 as it is received, and/or stored in storage device 410 , or other non-volatile storage for later execution.
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Abstract
Description
based on {circumflex over (P)}, Ŝ and {circumflex over (P)}H, ŜH, wherein {circumflex over ( )}
p=dim(S 1)≥dim(S 2)=q≥1
The principal angles θk∈[0, π/2], k=1, . . . , q, between S1 and S2 are defined recursively as
when k=1, ∥u1∥=∥v1|=1; when k≥2, ∥uk∥=∥vk∥=1; uk Tui=0; Vk Tvi=0 where i=1, . . . , k−1.
X≈PS T (1)
where the matrix Xm×n=[x1, x2 . . . xn], x∈ m, consist of n data samples represented as the n column vectors. Matrices Pm×k and Sn×k, k<<min(m, n), are two lower-dimension factors whose product approximates the original data set X. The k column vectors of P are prototype patterns learned from X; the ith row of S is a soft indicator using k prototypes to restore the ith sample. Thus, the columns of P can also be considered as an approximate generating set for the subspace containing samples {xi}i=1 n. In this modeling, we concentrate on P, the prototype patterns, and its changing behavior. S describes how the k prototypes are distributed among the n samples and may also contain useful information to characterize the dataset.
here a≤pq is a constant, and σ1 and σ2 are the smallest eigenvalues of R′ and R, respectively.
A=Q A R A Q A T Q A =I p ,R A∈ p×p
B=Q B R B Q B T Q B =I p ,R B∈ q×q
∥diag(cos θ)∥2 =∥Y(Q T Q′)Z∥ 2 =∥Q T Q′∥ 2
where diag(cos θ)=Y(QTQ′)Z is the SVD of QTQ′. The inequality can now be re-written as:
∥P T P′∥=∥R T Q T Q′R′∥≤∥R∥∥Q T Q′∥∥R′∥=pqL 2 ∥Q T Q′∥
∥Q T Q′∥=∥(RR −1)Q T Q′(R′R′ −1 ∥=∥R −1 P T P′R′ −1 ∥≤∥R −1 ∥∥P T P′∥∥R′ −1∥ (10)
H 0 :P′ T P=0 (3)
-
- Input: data sets X,X′, and threshold h.
- Output: Feature basis PH, indicator matrix SH, the likelihood ratio test statistic A, and the testing result.
-
- 1: Initialize P′,S′, {circumflex over (P)}, Ŝ, {circumflex over (P)}H and ŜH, and λ randomly.
- 2: Iteratively update P′ and S′ using (5) until convergence
- 3: Iteratively update {circumflex over (P)} and Ŝ using (5) until convergence
- 4: Iteratively update {circumflex over (P)}H and ŜH using (7) until convergence
- 5: Compute Λ using (8)
- 6: Reject H0 if Λ is smaller than h.
which is equivalent to minimizing.
(P,S)=∥X−PS T∥2 +λ∥P T P′∥ 2 (6)
where λ>0 is the Lagrange multiplier. To solve this constrained optimization problem, the non-increasing updating rule is given through the following Lemma:
G(u,u′)≥F(u),G(u,u)=F(u) (12)
are satisfied.
u t+1=arg min G(u,u t) (13)
G(u,u t)=F(u t)+(u−u t)T ∇F(u t)+½(u−u t)T K(u T)(u−u t) (14)
is an auxiliary function for
where K(ut) is a diagonal matrix defined as
K ab(u′)=δab(S T Su+λu′ T u′Iu)a /u a t (16)
F(u)=F(u t)+(u−u t)T ∇F(u t)+½(u−u t)T(S T S+λu′ T u′I)(u−u′) (17)
with (14) to find that G(u, ut)≥F(u) is equivalent to
0≤(u−u t)T[K(u t)−(S T S+λu′ T u′I)](u−u t) (18)
M ab(u t)=u t a(K(u t)−(S T S+λu′ T u′I))ab u t b (19)
which is a rescaling of the components of K(ut)−(STS+λu′Tu′I) Then, K(ut)−(STS+λu′Tu′I) is positive semidefinite if and only if M is, and
u t+1 =u t −K(u t)−1 ∇F(u t) (21)
We then get
During the update, each entry of P and S may have different gradient speed, so λ is set to be the average
as given in
TABLE 1 |
Configuration of the pattern change data sets. |
| ||||
Name | Part | |||
1 | |
no. | Dim. | |
sys | comp.sys.ibm.pc | |
400 × 2 | 1558 |
ossys | comp.os.ms- | comp.sys.mac | 200 × 4 | 2261 |
windows.misc, | comp.windows.x | |||
comp.sys.ibm.pc | ||||
computer | comp.graphics, | comp.sys.ibm.pc, | 100 × 6 | 1606 |
comp.os.ms- | comp.sys.mac, | |||
windows.misc, | sci.electronics | |||
comp.sys.ibm.pc | ||||
socialtalk | talk.politics.guns, | alt.atheism, | 100 × 8 | 3312 |
talk.politics.mideast, | soc.religion.christian, | |||
talk.politics.misc, | talk.politics.misc, | |||
talk.religion.misc | talk.religion.misc, | |||
sci | sci.crypt | sci.med | 400 × 2 | 2870 |
rec-sci | rec.sport.baseball | sci.electronics, | 200 × 4 | 2800 |
rec.sport.hockey | sci.space | |||
comp- | comp.graphics, | sci.electronics, | 100 × 6 | 1864 |
sci | comp.os.ms- | sci.med, | ||
windows.misc, | sci.space | |||
comp.sys.ibm.pc | ||||
rec-talk | rec.autos, | talk.politics.guns, | 100 × 8 | 2992 |
rec. motorcycles, | talk.politics.mideast, | |||
rec.sport.baseball | talk.politics.misc, | |||
rec.sport.hockey | talk.religion.misc | |||
-
- i). Constructing two data sets by randomly sampling 200 articles, each dataset with 100 samples, only from Part 1 (or Part 2).
- ii). Applying LRatio and the four comparison methods on the two data sets.
- iii). Repeating i) and ii) 20 times.
-
- i). Constructing the first data set by randomly sampling 100
articles form Part 1; constructing the second data set by randomly sampling 100 articles fromPart 2. - ii). Applying LRatio and the four comparison methods on the two data sets.
- iii). Repeating i) and ii) 20 times.
- i). Constructing the first data set by randomly sampling 100
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